# MultiBand Diffusion AudioCraft provides the code and models for MultiBand Diffusion, [From Discrete Tokens to High Fidelity Audio using MultiBand Diffusion][arxiv]. MultiBand diffusion is a collection of 4 models that can decode tokens from EnCodec tokenizer into waveform audio. Open In Colab
## Installation Please follow the AudioCraft installation instructions from the [README](../README.md). ## Usage We offer a number of way to use MultiBand Diffusion: 1. The MusicGen demo includes a toggle to try diffusion decoder. You can use the demo locally by running [`python -m demos.musicgen_app --share`](../demos/musicgen_app.py), or through the [MusicGen Colab](https://colab.research.google.com/drive/1JlTOjB-G0A2Hz3h8PK63vLZk4xdCI5QB?usp=sharing). 2. You can play with MusicGen by running the jupyter notebook at [`demos/musicgen_demo.ipynb`](../demos/musicgen_demo.ipynb) locally (if you have a GPU). ## API We provide a simple API and pre-trained models for MusicGen and for EnCodec at 24 khz for 3 bitrates (1.5 kbps, 3 kbps and 6 kbps). See after a quick example for using MultiBandDiffusion with the MusicGen API: ```python import torchaudio from audiocraft.models import MusicGen, MultiBandDiffusion from audiocraft.data.audio import audio_write model = MusicGen.get_pretrained('facebook/musicgen-melody') mbd = MultiBandDiffusion.get_mbd_musicgen() model.set_generation_params(duration=8) # generate 8 seconds. wav, tokens = model.generate_unconditional(4, return_tokens=True) # generates 4 unconditional audio samples and keep the tokens for MBD generation descriptions = ['happy rock', 'energetic EDM', 'sad jazz'] wav_diffusion = mbd.tokens_to_wav(tokens) wav, tokens = model.generate(descriptions, return_tokens=True) # generates 3 samples and keep the tokens. wav_diffusion = mbd.tokens_to_wav(tokens) melody, sr = torchaudio.load('./assets/bach.mp3') # Generates using the melody from the given audio and the provided descriptions, returns audio and audio tokens. wav, tokens = model.generate_with_chroma(descriptions, melody[None].expand(3, -1, -1), sr, return_tokens=True) wav_diffusion = mbd.tokens_to_wav(tokens) for idx, one_wav in enumerate(wav): # Will save under {idx}.wav and {idx}_diffusion.wav, with loudness normalization at -14 db LUFS for comparing the methods. audio_write(f'{idx}', one_wav.cpu(), model.sample_rate, strategy="loudness", loudness_compressor=True) audio_write(f'{idx}_diffusion', wav_diffusion[idx].cpu(), model.sample_rate, strategy="loudness", loudness_compressor=True) ``` For the compression task (and to compare with [EnCodec](https://github.com/facebookresearch/encodec)): ```python import torch from audiocraft.models import MultiBandDiffusion from encodec import EncodecModel from audiocraft.data.audio import audio_read, audio_write bandwidth = 3.0 # 1.5, 3.0, 6.0 mbd = MultiBandDiffusion.get_mbd_24khz(bw=bandwidth) encodec = EncodecModel.get_encodec_24khz() somepath = '' wav, sr = audio_read(somepath) with torch.no_grad(): compressed_encodec = encodec(wav) compressed_diffusion = mbd.regenerate(wav, sample_rate=sr) audio_write('sample_encodec', compressed_encodec.squeeze(0).cpu(), mbd.sample_rate, strategy="loudness", loudness_compressor=True) audio_write('sample_diffusion', compressed_diffusion.squeeze(0).cpu(), mbd.sample_rate, strategy="loudness", loudness_compressor=True) ``` ## Training The [DiffusionSolver](../audiocraft/solvers/diffusion.py) implements our diffusion training pipeline. It generates waveform audio conditioned on the embeddings extracted from a pre-trained EnCodec model (see [EnCodec documentation](./ENCODEC.md) for more details on how to train such model). Note that **we do NOT provide any of the datasets** used for training our diffusion models. We provide a dummy dataset containing just a few examples for illustrative purposes. ### Example configurations and grids One can train diffusion models as described in the paper by using this [dora grid](../audiocraft/grids/diffusion/4_bands_base_32khz.py). ```shell # 4 bands MBD trainning dora grid diffusion.4_bands_base_32khz ``` ### Learn more Learn more about AudioCraft training pipelines in the [dedicated section](./TRAINING.md). ## Citation ``` @article{sanroman2023fromdi, title={From Discrete Tokens to High-Fidelity Audio Using Multi-Band Diffusion}, author={San Roman, Robin and Adi, Yossi and Deleforge, Antoine and Serizel, Romain and Synnaeve, Gabriel and Défossez, Alexandre}, journal={arXiv preprint arXiv:}, year={2023} } ``` ## License See license information in the [README](../README.md). [arxiv]: https://dl.fbaipublicfiles.com/encodec/Diffusion/paper.pdf [mbd_samples]: https://ai.honu.io/papers/mbd/